Anaplan Data Analyst -

Renaissance Learning
City of London
1 month ago
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Overview

Renaissance is a global leader in education technology, providing educational assessments, practice and intervention solutions, and data analytics. The company supports over 18 million students in over 100 countries and now incorporates GL Assessment (GL Education).

Renaissance Global is recruiting for a Data Analyst (Anaplan Specialist) to join the revenue operations team, reporting to the Revenue Operations Manager. The role focuses on designing, building, and maintaining Anaplan models to support business planning, forecasting, and performance management, working with cross-functional teams to translate requirements into scalable Anaplan solutions.

Responsibilities
  • Lead the development and rollout, including proof of concepts, of new Anaplan models to support business expansion
  • Design, develop, and maintain Anaplan models that support business processes
  • Continuously enhance and optimise existing models to improve performance and scalability
  • Understand business needs and translate planning requirements into Anaplan formulas and modules in collaboration with cross-functional teams
  • Ensure data accuracy by integrating Anaplan with core systems
  • Drive best practices, provide user support and training, and champion adoption across the business
  • Own platform governance, documentation, and ongoing model maintenance
  • Collaborate to design and implement technology aligned with business objectives
  • Identify issues and generate actionable recommendations using Anaplan methodologies
Qualifications
  • Experience with Anaplan; ideally with Level 1 and Level 2 Model Builder certifications (Level 3 or Solution Architect a plus)
  • Self-motivated, analytical, able to work unsupervised and meet deadlines
You Will Also Have Or Be
  • Bachelor’s degree in Finance, Business, Computer Science, or a related field
  • Experience in cross-functional initiatives in a fast-moving environment
  • Experience in B2B and enterprise/SaaS or subscription-based product with high growth
  • Experience in sales incentive design, sales budget modelling, and compensation methodology
  • Experience in pipeline management and forecasting in a B2B environment
Additional information
  • This is a UK, London-based role. You must reside in the United Kingdom and have the right to work. Sponsorship is not offered.
  • Location: London Head Office (Brentford) on a Hybrid basis (3 days in office, 2 days remote). The London office will move to a South West London location in early 2026.
  • Closing date: Tuesday 23 September 2025. Candidates moving to the next stage will be contacted by Monday 29 September 2025.
  • Salary and benefits: competitive salary plus benefits.
Benefits
  • Pension & Insurance – salary sacrifice pension with employer contribution; Life and income protection insurance
  • Holiday and leave – 22 days plus 3 Christmas shutdown days, birthday day off, up to 5 paid volunteering days, and option to buy extra holidays
  • Growth and development – extensive training opportunities
  • Perks – benefits platform with discounts, rewards, and tech purchase options
  • Wellbeing – maternity/paternity/adoption leave, employee assistance program, mental health support, and healthcare options
  • Office benefits – season ticket loan, cycle to work scheme, fruit delivery

Note: This role is subject to DBS and background checks.

We are an equal opportunities employer and encourage applicants from all backgrounds. If you require reasonable adjustments to apply or interview, please contact us. All information will be kept confidential under GDPR guidelines.


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